Deep neural networks using a single neuron: folded-in-time architecture using feedback-modulated delay loops.

Journal: Nature communications
Published Date:

Abstract

Deep neural networks are among the most widely applied machine learning tools showing outstanding performance in a broad range of tasks. We present a method for folding a deep neural network of arbitrary size into a single neuron with multiple time-delayed feedback loops. This single-neuron deep neural network comprises only a single nonlinearity and appropriately adjusted modulations of the feedback signals. The network states emerge in time as a temporal unfolding of the neuron's dynamics. By adjusting the feedback-modulation within the loops, we adapt the network's connection weights. These connection weights are determined via a back-propagation algorithm, where both the delay-induced and local network connections must be taken into account. Our approach can fully represent standard Deep Neural Networks (DNN), encompasses sparse DNNs, and extends the DNN concept toward dynamical systems implementations. The new method, which we call Folded-in-time DNN (Fit-DNN), exhibits promising performance in a set of benchmark tasks.

Authors

  • Florian Stelzer
    Institute of Mathematics, Technische Universität Berlin, D-10623, Germany; Department of Mathematics, Humboldt-Universität zu Berlin, D-12489, Germany. Electronic address: stelzer@math.tu-berlin.de.
  • André Röhm
    Institute of Theoretical Physics, Technische Universität Berlin, D-10623, Germany; Instituto de Física Interdisciplinar y Sistemas Complejos, IFISC (CSIC-UIB), Campus Universitat de les Illes Balears, E-07122 Palma de Mallorca, Spain. Electronic address: aroehm@mailbox.tu-berlin.de.
  • Raul Vicente
    Computational Neuroscience Lab, Institute of Computer Science, University of Tartu, Tartu, Estonia.
  • Ingo Fischer
    Instituto de Física Interdisciplinar y Sistemas Complejos, IFISC (UIB-CSIC), Campus Universitat de les Illes Baleares, Palma de Mallorca, Spain.
  • Serhiy Yanchuk
    Institute of Mathematics, Technische Universität Berlin, D-10623, Germany. Electronic address: yanchuk@math.tu-berlin.de.